4.7 Article

IntegralVac: A Machine Learning-Based Comprehensive Multivalent Epitope Vaccine Design Method

Journal

VACCINES
Volume 10, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/vaccines10101678

Keywords

multivalent epitope vaccine design; immunoinformatics; MHC peptide binding affinity and immunogenicity; deep learning vaccine design; cancer and COVID-19 epitope design

Funding

  1. Lombardi Comprehensive Cancer Center METRO pilot award
  2. Georgetown Lombardi's Cancer Research Training and Education Coordination (CRTEC)

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In this study, a comprehensive machine learning method called IntegralVac was developed to predict peptide binding affinity and immunogenicity for vaccine design in COVID-19 and cancer research. IntegralVac integrated three existing deep learning tools and showed improved prediction accuracy compared to control servers. The method was validated using multiple datasets and additional clinical checkpoint filters were implemented to further enhance prediction accuracy.
In the growing field of vaccine design for COVID and cancer research, it is essential to predict accurate peptide binding affinity and immunogenicity. We developed a comprehensive machine learning method, 'IntegralVac,' by integrating three existing deep learning tools: DeepVacPred, MHCSeqNet, and HemoPI. IntegralVac makes predictions for single and multivalent cancer and COVID-19 epitopes without manually selecting epitope prediction possibilities. We performed several rounds of optimization before integration, then re-trained IntegralVac for multiple datasets. We validated the IntegralVac with 4500 human cancer MHC I peptides obtained from the Immune Epitope Database (IEDB) and with cancer and COVID epitopes previously selected in our laboratory. The other data referenced from existing deep learning tools served as a positive control to ensure successful prediction was possible. As evidenced by increased accuracy and AUC, IntegralVac improved the prediction rate of top-ranked epitopes. We also examined the compatibility between other servers' clinical checkpoint filters and IntegralVac. This was to ensure that the other servers had a means for predicting additional checkpoint filters that we wanted to implement in IntegralVac. The clinical checkpoint filters, including allergenicity, antigenicity, and toxicity, were used as additional predictors to improve IntegralVac's prediction accuracy. We generated immunogenicity scores by cross-comparing sequence inputs with each other and determining the overlap between each individual peptide sequence. The IntegralVac increased the immunogenicity prediction accuracy to 90.1% AUC and the binding affinity accuracy to 95.4% compared to the control NetMHCPan server. The IntegralVac opens new avenues for future in silico methods, by building upon established models for continued prediction accuracy improvement.

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